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Time Series Forecasting Using Foundation Models
book

Time Series Forecasting Using Foundation Models

by Marco Peixeiro
November 2025
Intermediate to advanced
256 pages
6h 54m
English
Manning Publications
Content preview from Time Series Forecasting Using Foundation Models

7 Deterministic forecasting with TimesFM

This chapter covers

  • Exploring the architecture of TimesFM
  • Zero-shot forecasting with TimesFM
  • Predicting with exogenous features

All foundation models we’ve explored so far are probabilistic forecasting models, which output a future probability distribution for each step in the forecast horizon. This allows us to derive arbitrary quantiles and quantify the uncertainty of the outcome as prediction intervals.

Although this approach provides a more complete view of the future, a model’s output requires more processing steps. Also, we may be interested in only the point forecast, not the intervals. This approach is especially useful when a definitive forecast, rather than a range of possible values, ...

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